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首页> 外文期刊>Spanish Journal of Agricultural Research >A quantitative multivariate methodology for unsupervised class identification in pistachio (Pistacia vera L.) plant leaves size
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A quantitative multivariate methodology for unsupervised class identification in pistachio (Pistacia vera L.) plant leaves size

机译:一种定量多变量方法,用于在开发虫(Pistacia Vera L.)植物叶片尺寸

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Aim of study: Genetic diversity of pistachio, can be evaluated by using different descriptors, as adopted in international certification systems. Mainly the descriptors are morphological traits as leaf, which represents an important organ for its sensibility to growth conditions during the expansion phase. This study adopted a rapid and quantitative non-hierarchic clustering classification (k-means), to extract size classes basing on the contemporary combination of different morphological traits ( i.e ., leaf stalk length, terminal leaf length, terminal leaf width and terminal leaf ratio) of a varietal collection composed by 21 pistachio cultivars. Area of study : Worldwide. Material and methods : The unsupervised non-hierarchic clustering technique was adopted to the entire samples of pistachio leaves from k=2 to k=15 for both four morphological variables ( i.e ., leaf stalk length, terminal leaf length, terminal leaf width and terminal leaf ratio) and three morphological variables ( i.e ., terminal leaf length, terminal leaf width and terminal leaf ratio). Main results : A classification model only on the three morphological variables (for results of statistical analysis in which the groups resulted to be more separated and different for all the variables), with k= 5 (five groups), was constructed using a non-linear artificial neural network approach. The percentages of bad prediction in both training and testing resulted equal to 0%. The “terminal leaf length” returned the higher impact (44.89%). Research highlights: The contemporary combination of different morphological leaf traits, allowed to create an automatic classification of size classes of great importance for cultivar identification and comparison.
机译:研究的目的:通过使用不同的描述符来评估开心果的遗传多样性,如国际认证系统所采用的。主要是描述符是作为叶片的形态特征,这代表了其在扩增阶段期间对生长条件的敏感性的重要器官。本研究采用了快速和定量的非等级聚类分类(K-Means),以提取基于不同形态特征的当代组合的大小类(即,叶茎长度,终端叶长度,终端叶宽和终端叶比)由21种开心素种植的品种收集。学习领域:全世界。材料和方法:对于四种形态变量,从k = 2至k = 15采用未经监督的非阶级聚类技术对来自k = 2至k = 15的整个样本(即,叶茎长度,终端叶长度,终端叶宽和终端)叶比例)和三种形态变量(即终端叶长度,终端叶宽和终端叶比)。主要结果:仅在三种形态变量上进行分类模型(用于统计分析的结果,其中由于其中对所有变量更分离的统计分析和不同的分离),使用非 - k = 5(五组)构建线性人工神经网络方法。训练和测试中的错误预测的百分比导致等于0%。 “终端叶长度”恢复较高的影响(44.89%)。研究亮点:当代形态叶状性状的当代组合,允许自动分类大小,对品种鉴定和比较重视。

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